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Energy Consumption Prediction of a CNC Machining Process With Incomplete Data

机译:具有不完整数据的CNC加工过程的能耗预测

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摘要

Energy consumption prediction of a CNC machining process is important for energy efficiency optimization strategies. To improve the generalization abilities, more and more parameters are acquired for energy prediction modeling. While the data collected from workshops may be incomplete because of misoperation, unstable network connections, and frequent transfers, etc. This work proposes a framework for energy modeling based on incomplete data to address this issue. First, some necessary preliminary operations are used for incomplete data sets. Then, missing values are estimated to generate a new complete data set based on generative adversarial imputation nets (GAIN). Next, the gene expression programming (GEP) algorithm is utilized to train the energy model based on the generated data sets. Finally, we test the predictive accuracy of the obtained model. Computational experiments are designed to investigate the performance of the proposed framework with different rates of missing data. Experimental results demonstrate that even when the missing data rate increases to 30%, the proposed framework can still make efficient predictions, with the corresponding RMSE and MAE 0.903 kJ and 0.739 kJ, respectively.
机译:CNC加工过程的能耗预测对于能效优化策略很重要。为了提高泛化能力,获取越来越多的参数用于能量预测建模。虽然从工作室收集的数据可能因误操作,不稳定的网络连接和频繁传输等而不完整等。这项工作提出了一种基于不完整数据来解决此问题的能源建模框架。首先,一些必要的初步操作用于不完整的数据集。然后,估计缺失的值以生成基于生成的对抗性撤消网络(GAIN)的新完整数据集。接下来,利用基因表达式编程(GEP)算法基于所生成的数据集训练能量模型。最后,我们测试所获得的模型的预测精度。计算实验旨在调查具有不同缺失数据率的提出框架的性能。实验结果表明,即使当缺失的数据速率增加到30%时,所提出的框架仍然可以高效预测,相应的RMSE和MAE 0.903 KJ和0.739 kJ。

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